Vincent Lemaire


Ontology type: schema:Person     


Person Info

NAME

Vincent

SURNAME

Lemaire

Publications in SciGraph latest 50 shown

  • 2017 First Connectomics Challenge: From Imaging to Connectivity in NEURAL CONNECTOMICS CHALLENGE
  • 2017 Online Learning of a Weighted Selective Naive Bayes Classifier with Non-convex Optimization in ADVANCES IN KNOWLEDGE DISCOVERY AND MANAGEMENT
  • 2016 Supervised Pre-processings Are Useful for Supervised Clustering in ANALYSIS OF LARGE AND COMPLEX DATA
  • 2015-09 Optimised probabilistic active learning (OPAL) in MACHINE LEARNING
  • 2015 A Survey on Supervised Classification on Data Streams in BUSINESS INTELLIGENCE
  • 2015 Incremental Weighted Naive Bays Classifiers for Data Stream in DATA SCIENCE, LEARNING BY LATENT STRUCTURES, AND KNOWLEDGE DISCOVERY
  • 2015 K-means Clustering on a Classifier-Induced Representation Space: Application to Customer Contact Personalization in REAL WORLD DATA MINING APPLICATIONS
  • 2014 A Supervised Methodology to Measure the Variables Contribution to a Clustering in NEURAL INFORMATION PROCESSING
  • 2013 A Two Layers Incremental Discretization Based on Order Statistics in STATISTICAL MODELS FOR DATA ANALYSIS
  • 2010-07 A non-parametric semi-supervised discretization method in KNOWLEDGE AND INFORMATION SYSTEMS
  • 2010 The Orange Customer Analysis Platform in ADVANCES IN DATA MINING. APPLICATIONS AND THEORETICAL ASPECTS
  • 2008 Combining Several SOM Approaches in Data Mining: Application to ADSL Customer Behaviours Analysis in DATA ANALYSIS, MACHINE LEARNING AND APPLICATIONS
  • 2007 Active Learning Strategies: A Case Study for Detection of Emotions in Speech in ADVANCES IN DATA MINING. THEORETICAL ASPECTS AND APPLICATIONS
  • 2006 A Statistical Approach for Learning Invariants: Application to Image Color Correction and Learning Invariants to Illumination in NEURAL INFORMATION PROCESSING
  • 2006 An Input Variable Importance Definition based on Empirical Data Probability Distribution in FEATURE EXTRACTION
  • 2006 Illumination-Invariant Color Image Correction in ADVANCES IN MACHINE VISION, IMAGE PROCESSING, AND PATTERN ANALYSIS
  • 2006 Driven Forward Features Selection: A Comparative Study on Neural Networks in NEURAL INFORMATION PROCESSING
  • 2005 The Many Faces of a Kohonen Map A Case Study: SOM-based Clustering for On-Line Fraud Behavior Classification in CLASSIFICATION AND CLUSTERING FOR KNOWLEDGE DISCOVERY
  • 2000-02 A New Method to Increase the Margin of Multilayer Perceptrons in NEURAL PROCESSING LETTERS
  • Affiliations

  • Orange (France) (current)
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